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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Bayesian merging of multiple climate model forecasts for seasonal hydrological predictions
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Bayesian merging of multiple climate model forecasts for seasonal hydrological predictions

机译:针对季节性水文预报的多种气候模型预报的贝叶斯合并

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摘要

This study uses a Bayesian approach to merge ensemble seasonal climate forecasts generated by multiple climate models for better probabilistic and deterministic forecasting. Within the Bayesian framework, the climatological distribution of the variable of interest serves as the prior, and the likelihood function is developed with a weighted linear regression between the climate model hindcasts and the corresponding observations. The resulting posterior distribution is the merged forecast, which represents our best estimate of the variable, including its mean and variance, given the current model forecast and knowledge about the model’s performance. The handling of multimodel climate forecasts and nonnormal distributed variables, such as precipitation, are two important extensions toward the application of the Bayesian merging approach for seasonal hydrological predictions. Two examples are presented as follows: seasonal forecast of sea surface temperature over equatorial Pacific and precipitation forecast over the Ohio River basin. Cross validation of these forecasts shows smaller root mean square error and smaller ranked probability score for the merged forecast as compared with raw forecasts from climate models and the climatological forecast, indicating an improvement in both deterministic and probabilistic forecast skills. Therefore there is great potential to apply this method to seasonal hydrological forecasting.
机译:这项研究使用贝叶斯方法来合并由多个气候模型生成的整体季节性气候预测,以实现更好的概率和确定性预测。在贝叶斯框架内,感兴趣变量的气候分布是先验的,并且似然函数是通过气候模型后兆和相应观测值之间的加权线性回归来开发的。由此产生的后验分布是合并的预测,它代表了我们对变量的最佳估计,包括当前模型预测和对模型性能的了解,包括变量的均值和方差。多模型气候预报和非正态分布变量(如降水​​)的处理是将贝叶斯合并方法应用于季节性水文预报的两个重要扩展。以下是两个例子:赤道太平洋海表温度的季节性预报和俄亥俄河流域的降水预报。与气候模型和气候预测的原始预测相比,这些预测的交叉验证显示,合并后的预测的均方根误差较小,而排名概率分数较小,这表明确定性和概率性预测技能均有所提高。因此,将这种方法应用于季节性水文预报具有很大的潜力。

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